Adversarial Online Learning with Temporal Feedback Graphs
Abstract
We study a variant of prediction with expert advice where the learner's action at round is only allowed to depend on losses on a specific subset of the rounds (where the structure of which rounds' losses are visible at time is provided by a directed "feedback graph" known to the learner). We present a novel learning algorithm for this setting based on a strategy of partitioning the losses across sub-cliques of this graph. We complement this with a lower bound that is tight in many practical settings, and which we conjecture to be within a constant factor of optimal. For the important class of transitive feedback graphs, we prove that this algorithm is efficiently implementable and obtains the optimal regret bound (up to a universal constant).
Cite
@article{arxiv.2407.00571,
title = {Adversarial Online Learning with Temporal Feedback Graphs},
author = {Khashayar Gatmiry and Jon Schneider},
journal= {arXiv preprint arXiv:2407.00571},
year = {2024}
}